I have a time series (apple stock prices -closing prices- turn into a data frame to fit a random forest using caret. I lagged on 1 day, 2 days and 6 days. I want to predict the next 2 days. Two step ahead forecast. But
predictfunction that does not allow the argument
forecastfunction. And i have seen that some people try to put the argument
n.ahead but is not working for me. Any advice? See the code
df<-data.frame(APPL) df$f1<-lag(df$APPL,1) df$f2=lag(df$APPL,2) df$f3=lag(df$APPL,6) # change column names colnames(df)<-c("price", "price_1", "price_2", "price_6") # remove rows (days) with NA. df<-df[complete.cases(df),] fitControl <- trainControl( method = "repeatedcv", number = 10, repeats = 1, classProbs = FALSE, verboseIter = TRUE, preProcOptions=list(thresh = 0.95, na.remove = TRUE, verbose = TRUE)) set.seed(1234) rf_grid= expand.grid(mtry = c(1:3)) fit <- train(price~., data=df, method="rf", preProcess=c("center","scale"), tuneGrid = rf_grid, trControl=fitControl, ntree = 200, metric="RMSE") nextday <- predict(fit,`WHAT GOES HERE?`)
If i put just
newdatathe whole dataset. Which i think is wrong. The other thing i was thinking about is to do a loop. Predict for 1 step ahead, because i have the data of 1,2 and 6 days ago. And the fill for the 2 step ahead forecast the 1 day ago "cell" with the forecast i did before.